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Callable PyTrees and filtered transforms => neural networks in JAX. https://docs.kidger.site/equinox/

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Equinox

Equinox is a JAX library based around a simple idea: represent parameterised functions (such as neural networks) as PyTrees.

In doing so:

  • We get a PyTorch-like API...
  • ...that's fully compatible with native JAX transformations...
  • ...with no new concepts you have to learn. (It's all just PyTrees.)

The elegance of Equinox is its selling point in a world that already has Haiku, Flax and so on.

(In other words, why should you care? Because Equinox is really simple to learn, and really simple to use.)

Installation

pip install equinox

Requires Python 3.7+ and JAX 0.3.4+.

Documentation

Available at https://docs.kidger.site/equinox.

Quick example

Models are defined using PyTorch-like syntax:

import equinox as eqx
import jax

class Linear(eqx.Module):
    weight: jax.numpy.ndarray
    bias: jax.numpy.ndarray

    def __init__(self, in_size, out_size, key):
        wkey, bkey = jax.random.split(key)
        self.weight = jax.random.normal(wkey, (out_size, in_size))
        self.bias = jax.random.normal(bkey, (out_size,))

    def __call__(self, x):
        return self.weight @ x + self.bias

and fully compatible with normal JAX operations:

@jax.jit
@jax.grad
def loss_fn(model, x, y):
    pred_y = jax.vmap(model)(x)
    return jax.numpy.mean((y - pred_y) ** 2)

batch_size, in_size, out_size = 32, 2, 3
model = Linear(in_size, out_size, key=jax.random.PRNGKey(0))
x = jax.numpy.zeros((batch_size, in_size))
y = jax.numpy.zeros((batch_size, out_size))
grads = loss_fn(model, x, y)

Finally, there's no magic behind the scenes. All eqx.Module does is register your class as a PyTree. From that point onwards, JAX already knows how to work with PyTrees.

Citation

If you found this library to be useful in academic work, then please cite: (arXiv link)

@article{kidger2021equinox,
    author={Patrick Kidger and Cristian Garcia},
    title={{E}quinox: neural networks in {JAX} via callable {P}y{T}rees and filtered transformations},
    year={2021},
    journal={Differentiable Programming workshop at Neural Information Processing Systems 2021}
}

(Also consider starring the project on GitHub.)

See also

See the related Diffrax library for JAX-based differential equation solvers.

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Callable PyTrees and filtered transforms => neural networks in JAX. https://docs.kidger.site/equinox/

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